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Künstliche Intelligenz mit AutoML, Low-Code und No-Code: Eine Markterhebung von Software-Tools

Author

Listed:
  • Simons, Martin
  • Roloff, Malte
  • Liebe, Andrea
  • Lundborg, Martin

Abstract

Automatisiertes Maschinelles Lernen (AutoML) sowie Low-Code und No-Code versprechen, im Sinne des Citizen Developer-Konzepts eine einfachere Nutzung von Künstlicher Intelligenz (KI) indem die erforderlichen Programmierkenntnisse bzw. der Entwicklungsaufwand reduziert werden. Diese neuen Ansätze erleichtern somit insbesondere kleinen und mittleren Unternehmen (KMU) den Einstieg und bieten damit das Potenzial für eine schnelle Verbreitung und stärkere Nutzung von KI-Lösungen. Ziel dieser Studie ist es zu untersuchen, ob diese Versprechen eingelöst werden können.

Suggested Citation

  • Simons, Martin & Roloff, Malte & Liebe, Andrea & Lundborg, Martin, 2023. "Künstliche Intelligenz mit AutoML, Low-Code und No-Code: Eine Markterhebung von Software-Tools," WIK Discussion Papers 501, WIK Wissenschaftliches Institut für Infrastruktur und Kommunikationsdienste GmbH.
  • Handle: RePEc:zbw:wikdps:280934
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    References listed on IDEAS

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    1. Sundberg, Leif & Holmström, Jonny, 2023. "Democratizing artificial intelligence: How no-code AI can leverage machine learning operations," Business Horizons, Elsevier, vol. 66(6), pages 777-788.
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      Keywords

      Künstliche Intelligenz; Automatisierung; PC-Software; KMU; Deutschland;
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